np.where has the semantics of a vectorized if/else (similar to Apache Spark's when/otherwise DataFrame method). I know that I can use np.where on pandas.Series, but pandas often defines its own API to use instead of raw numpy functions, which is usually more convenient with pd.Series/pd.DataFrame.

Sure enough, I found pandas.DataFrame.where. However, at first glance, it has completely different semantics. I could not find a way to rewrite the most basic example of np.where using pandas where:

# df is pd.DataFrame
# how to write this using df.where?
df['C'] = np.where((df['A']<0) | (df['B']>0), df['A']+df['B'], df['A']/df['B'])

Am I missing something obvious? Or is pandas' where intended for a completely different use case, despite same name as np.where?

  • The docstring pandas.pydata.org/pandas-docs/stable/generated/… seems to explain it reasonably well (althought it could use an example or two). Pay attention to the short description, and the description of the cond and other arguments, but ignore the option for these arguments to be callable. Jul 26, 2016 at 1:04
  • @WarrenWeckesser On the second reading of the docs, I think I got it... It's something like (df.A + df.B).where((df['A']<0) | (df['B']>0), df.A/df.B), right? I'll delete my question I guess.
    – max
    Jul 26, 2016 at 1:12
  • 13
    @max: No don't delete. This will likely help someone in the future. Jul 26, 2016 at 1:18

3 Answers 3



(df['A'] + df['B']).where((df['A'] < 0) | (df['B'] > 0), df['A'] / df['B'])

The difference between the numpy where and DataFrame where is that the default values are supplied by the DataFrame that the where method is being called on (docs).


np.where(m, A, B)

is roughly equivalent to

A.where(m, B)

If you wanted a similar call signature using pandas, you could take advantage of the way method calls work in Python:

pd.DataFrame.where(cond=(df['A'] < 0) | (df['B'] > 0), self=df['A'] + df['B'], other=df['A'] / df['B'])

or without kwargs (Note: that the positional order of arguments is different from the numpy where argument order):

pd.DataFrame.where(df['A'] + df['B'], (df['A'] < 0) | (df['B'] > 0), df['A'] / df['B'])
  • 1
    if you would like to show an example in the doc string would be a great contribution !
    – Jeff
    Jul 26, 2016 at 2:04
  • @Jeff Just submitted a PR. Do you have any resources for understanding pandas's source code structure at a high level (e.g. extant docs/ posts on developer forums)? I read through the contribution/development docs that I found and didn't see anything resembling this kind of 5000-ft view of the source code.
    – Alex
    Jul 26, 2016 at 3:38
  • 2
    And what do we do when we want a single value if condition is satisfied? We can't really say 1.where(df['A']>df['B'], other=df['C'])
    – max
    Aug 8, 2016 at 23:58
  • 1
    @max Make a new DataFrame with same index that is filled with ones.
    – Alex
    Apr 30, 2017 at 14:32
  • @Alex, Thank you! --I was using a pd.Dataframe instance and not the class object pd.DataFrame. Using "pd.DataFrame" works.
    – techvslife
    May 3, 2017 at 20:13

I prefer using pandas' mask over where since it is less counterintuitive (at least for me).

(df['A']/df['B']).mask(df['A']<0) | (df['B']>0), df['A']+df['B'])

Here, column A and B are added where the condition holds, otherwise their ratio stays untouched.


pandas 2.2 update: Series.case_when

From pandas 2.2.0, the API provides a pandaic alternative to np.where and np.select.

Using np.where:

df['C'] = np.where((df['A']<0) | (df['B']>0), df['A']+df['B'], df['A']/df['B'])

Using case_when:

cond = (df['A']<0) | (df['B']>0)
df['C'] = (df['A']/['B']).case_when([(cond, df['A']+df['B']))

# or 

df['C'] = 0 # or pd.na or any reasonable default
df['C'] = df['C'].case_when([(cond, df['A']+df['B'], 
                             (~cond, df['A']/df['B'])),])

You notice that case_when allows you to provide an arbitrary list of conditions and replacement pairs, so this can generalize to several conditions easily (much like np.select).

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